BACKGROUND
[0001] Sensors such as cameras are often used in vehicles for various purposes, such as
providing assistance to a driver with a back-up camera or providing driver assistance
such as lane-keeping technology. However, occlusions on the camera caused by water,
dirt, or other obstacles can prevent the camera from capturing a clear image.
SUMMARY
[0002] According to one aspect of the disclosure, a compute device for detection of occlusions
on a camera of a vehicle, the compute device comprising the camera; an occlusion detection
module to receive one or more images from the camera of the vehicle; process the one
or more images, wherein to process the one or more images comprises at least one of
(i) determine a change in optical flow based on three images of the one or more images,
(ii) determine one or more regions of at least one image of the one or more images
that are out of focus, (iii) perform edge detection on at least one image of the one
or more images, and (iv) detect one or more circular lens artifacts in at least one
image of the one or more images; and determine, based on the one or more images, one
or more occlusions on the camera of the vehicle.
[0003] In some embodiments, to process the one or more images comprises to process one image,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based only on the one image from
the camera, the one or more occlusions on the camera of the vehicle.
[0004] In some embodiments, to process the one or more images comprises to process no more
than three images, wherein to determine, based on the one or more images, the one
or more occlusions on the camera of the vehicle comprises to determine, based only
on no more than three images from the camera, the one or more occlusions on the camera
of the vehicle.
[0005] In some embodiments, to process the one or more images comprises to determine the
change in optical flow based on the three images of the one or more images, wherein
to determine the change in optical flow based on the three images comprises determine
a first optical flow between a first image of the three images and a second image
of the three images; determine a second optical flow between the second image and
a third image of the three images; and determine a difference in optical flow magnitude
between the first optical flow and the second optical flow for each of a plurality
of pixels, wherein to determine, based on the one or more images, the one or more
occlusions on the camera of the vehicle comprises to determine, based on the difference
in optical flow magnitude between the first optical flow and the second optical flow
for each of a plurality of pixels, the one or more occlusions on the camera of the
vehicle.
[0006] In some embodiments, to process the one or more images further comprises to determine
a stationary score for each of the plurality of pixels based on the first optical
flow, wherein the stationary score for each of the plurality of pixels indicates a
magnitude of optical flow in the first optical flow for the corresponding pixel, wherein
to determine, based on the one or more images, the one or more occlusions on the camera
of the vehicle comprises to determine, based on the stationary score for each of the
plurality of pixels, the one or more occlusions on the camera of the vehicle.
[0007] In some embodiments, to process the one or more images comprises to determine the
one or more regions of the at least one image that are out of focus, wherein to determine
the one or more regions the at least one image that are out of focus comprises divide
the at least one image into a plurality of subimages; and determine, for each of the
plurality of subimages, whether the corresponding subimage is blurry, wherein to determine,
based on the one or more images, the one or more occlusions on the camera of the vehicle
comprises to determine, based on a determination of whether each of the plurality
of subimages is blurry, the one or more occlusions on the camera of the vehicle.
[0008] In some embodiments, to process the one or more images comprises to perform edge
detection on the at least one image of the one or more images, wherein to process
the one or more images further comprises expand each of a plurality of edges identified
in the at least one image during edge detection; and determine areas of at least one
image without expanded edges, wherein to determine, based on the one or more images,
the one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of areas of the at least one image without expanded edges, the
one or more occlusions on the camera of the vehicle.
[0009] In some embodiments, to process the one or more images comprises to detect one or
more circular lens artifacts in the at least one image of the one or more images,
wherein to detect one or more circular lens artifacts in the at least one image comprises
perform edge detection of the at least one image; identify each of a plurality of
contours defined by edge detection; and determine, for each of the plurality of contours,
a ratio of a circle enclosing the corresponding contour to an area enclosed by the
corresponding contour, wherein to determine, based on the one or more images, the
one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of the ratios for each of the plurality of contours.
[0010] In some embodiments, the compute device may further include selecting, based on one
or more current conditions of the vehicle, one or more parameters of an occlusion
detection algorithm.
[0011] In some embodiments, the compute device may further include applying a mask to the
one or more images to block the sky.
[0012] According to one aspect of the disclosure, a method for detection of occlusions on
a camera of a vehicle, the method comprising receiving, by a compute device, one or
more images from the camera of the vehicle; processing, by the compute device, the
one or more images, wherein processing the one or more images comprises at least one
of (i) determining a change in optical flow based on three images of the one or more
images, (ii) determining one or more regions of at least one image of the one or more
images that are out of focus, (iii) performing edge detection on at least one image
of the one or more images, and (iv) detecting one or more circular lens artifacts
in at least one image of the one or more images; and determining, by the compute device
and based on the one or more images, one or more occlusions on the camera of the vehicle.
[0013] In some embodiments, processing the one or more images comprises determining the
change in optical flow based on the three images of the one or more images, wherein
determining the change in optical flow based on the three images comprises determining,
by the compute device, a first optical flow between a first image of the three images
and a second image of the three images; determining, by the compute device, a second
optical flow between the second image and a third image of the three images; and determining,
by the compute device, a difference in optical flow magnitude between the first optical
flow and the second optical flow for each of a plurality of pixels, wherein determining,
based on the one or more images, the one or more occlusions on the camera of the vehicle
comprises determining, based on the difference in optical flow magnitude between the
first optical flow and the second optical flow for each of a plurality of pixels,
the one or more occlusions on the camera of the vehicle.
[0014] In some embodiments, processing the one or more images comprises determining the
one or more regions of the at least one image that are out of focus, wherein determining
the one or more regions the at least one image that are out of focus comprises dividing,
by the compute device, the at least one image into a plurality of subimages; and determining,
by the compute device and for each of the plurality of subimages, whether the corresponding
subimage is blurry, wherein determining, based on the one or more images, the one
or more occlusions on the camera of the vehicle comprises determining, based on a
determination of whether each of the plurality of subimages is blurry, the one or
more occlusions on the camera of the vehicle.
[0015] In some embodiments, processing the one or more images comprises performing edge
detection on the at least one image of the one or more images, wherein processing
the one or more images further comprises expanding, by the compute device, each of
a plurality of edges identified in the at least one image during edge detection; and
determining, by the compute device, areas of at least one image without expanded edges,
wherein determining, based on the one or more images, the one or more occlusions on
the camera of the vehicle comprises determining, based on a determination of areas
of the at least one image without expanded edges, the one or more occlusions on the
camera of the vehicle.
[0016] In some embodiments, processing the one or more images comprises detecting one or
more circular lens artifacts in the at least one image of the one or more images,
wherein detecting one or more circular lens artifacts in the at least one image comprises
performing, by the compute device, edge detection of the at least one image; identifying,
by the compute device, each of a plurality of contours defined by edge detection;
and determining, by the compute device and for each of the plurality of contours,
a ratio of a circle enclosing the corresponding contour to an area enclosed by the
corresponding contour, wherein determining, based on the one or more images, the one
or more occlusions on the camera of the vehicle comprises determining, based on a
determination of the ratios for each of the plurality of contours.
[0017] According to one aspect of the disclosure, one or more non-transitory computer-readable
media comprising a plurality of instructions stored thereon that, when executed, causes
a compute device, preferably the compute device according to the present invention,
to receive one or more images from a camera of a vehicle; process one or more images,
wherein to process the one or more images comprises at least one of (i) determining
a change in optical flow based on three images of the one or more images, (ii) determining
one or more regions of at least one image of the one or more images that are out of
focus, (iii) performing edge detection on at least one image of the one or more images,
and (iv) detecting one or more circular lens artifacts in at least one image of the
one or more images; and determine, based on the one or more images, one or more occlusions
on the camera of the vehicle.
[0018] In some embodiments, to process the one or more images comprises to determine the
change in optical flow based on the three images of the one or more images, wherein
to determine the change in optical flow based on the three images comprises determine
a first optical flow between a first image of the three images and a second image
of the three images; determine a second optical flow between the second image and
a third image of the three images; and determine a difference in optical flow magnitude
between the first optical flow and the second optical flow for each of a plurality
of pixels, wherein to determine, based on the one or more images, the one or more
occlusions on the camera of the vehicle comprises to determine, based on the difference
in optical flow magnitude between the first optical flow and the second optical flow
for each of a plurality of pixels, the one or more occlusions on the camera of the
vehicle.
[0019] In some embodiments, to process the one or more images comprises to determine the
one or more regions of the at least one image that are out of focus, wherein to determine
the one or more regions the at least one image that are out of focus comprises divide
the at least one image into a plurality of subimages; and determine, for each of the
plurality of subimages, whether the corresponding subimage is blurry, wherein to determine,
based on the one or more images, the one or more occlusions on the camera of the vehicle
comprises to determine, based on a determination of whether each of the plurality
of subimages is blurry, the one or more occlusions on the camera of the vehicle.
[0020] In some embodiments, to process the one or more images comprises to perform edge
detection on the at least one image of the one or more images, wherein to process
the one or more images further comprises expand each of a plurality of edges identified
in the at least one image during edge detection; and determine areas of at least one
image without expanded edges, wherein to determine, based on the one or more images,
the one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of areas of the at least one image without expanded edges, the
one or more occlusions on the camera of the vehicle.
[0021] In some embodiments, to process the one or more images comprises to detect one or
more circular lens artifacts in the at least one image of the one or more images,
wherein to detect one or more circular lens artifacts in the at least one image comprises
perform edge detection of the at least one image; identify each of a plurality of
contours defined by edge detection; and determine, for each of the plurality of contours,
a ratio of a circle enclosing the corresponding contour to an area enclosed by the
corresponding contour, wherein to determine, based on the one or more images, the
one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of the ratios for each of the plurality of contours.
BRIEF DESCRIPTION OF THE DRAWINGS
[0022] The concepts described herein are illustrated by way of example and not by way of
limitation in the accompanying figures. For simplicity and clarity of illustration,
elements illustrated in the figures are not necessarily drawn to scale. Where considered
appropriate, reference labels have been repeated among the figures to indicate corresponding
or analogous elements. The detailed description particularly refers to the accompanying
figures in which:
FIG. 1 is a simplified graphic of a vehicle including a compute device and a camera
on a road;
FIG. 2, 2a is one example picture from a camera showing occlusions;
FIG. 3 is a simplified block diagram of at least one embodiment of the compute device
of FIG. 1;
FIG. 4 is a block diagram of at least one embodiment of an environment that may be
established by the compute device of FIG. 3;
FIG. 5 is a simplified flow diagram of at least one embodiment of a method for detecting
occlusions on a camera that may be executed by the compute device of FIG. 3;
FIG. 6 is a simplified flow diagram of at least one embodiment of a method for processing
an image using differences in optical flow that may be executed by the compute device
of FIG. 3;
FIG. 7 is a simplified flow diagram of at least one embodiment of a method for processing
an image by analyzing blurriness that may be executed by the compute device of FIG.
3;
FIG. 8 is a simplified flow diagram of at least one embodiment of a method for processing
an image using edge detection that may be executed by the compute device of FIG. 3;
FIG. 9 is a simplified flow diagram of at least one embodiment of a method for processing
an image by detecting circular lens artifacts that may be executed by the compute
device of FIG. 3;
FIG. 10 is a simplified flow diagram of at least one embodiment of a method for determining
parameters for occlusion detection algorithms that may be executed by the compute
device of FIG. 3;
FIG. 11, 11a is one example picture from a camera showing a depiction of optical flow;
FIG. 12, 12a is another example picture from a camera showing a depiction of optical
flow that has changed from the picture in FIG. 11, 11a
FIG. 13, 13a is one example picture showing a blurriness analysis;
FIG. 14, 14a is one example picture from a camera showing occlusions;
FIG. 15, 15a is an edge detection analysis of the picture from FIG. 14, 14a;
FIG. 16, 16a is one example picture from a camera at night; and
FIG. 17 is an analysis of the picture from FIG. 16, 16a based on detection of circular
lens artifacts.
DETAILED DESCRIPTION
[0023] While the concepts of the present disclosure are susceptible to various modifications
and alternative forms, specific embodiments thereof have been shown by way of example
in the drawings and will be described herein in detail. It should be understood, however,
that there is no intent to limit the concepts of the present disclosure to the particular
forms disclosed, but on the contrary, the intention is to cover all modifications,
equivalents, and alternatives consistent with the present disclosure and the appended
claims.
[0024] References in the specification to "one embodiment," "an embodiment," "an illustrative
embodiment," etc., indicate that the embodiment described may include a particular
feature, structure, or characteristic, but every embodiment may or may not necessarily
include that particular feature, structure, or characteristic. Moreover, such phrases
are not necessarily referring to the same embodiment. Further, when a particular feature,
structure, or characteristic is described in connection with an embodiment, it is
submitted that it is within the knowledge of one skilled in the art to effect such
feature, structure, or characteristic in connection with other embodiments whether
or not explicitly described. Additionally, it should be appreciated that items included
in a list in the form of "at least one A, B, and C" can mean (A); (B); (C): (A and
B); (B and C); (A and C); or (A, B, and C). Similarly, items listed in the form of
"at least one of A, B, or C" can mean (A); (B); (C): (A and B); (B and C); (A and
C); or (A, B, and C).
[0025] The disclosed embodiments may be implemented, in some cases, in hardware, firmware,
software, or any combination thereof. The disclosed embodiments may also be implemented
as instructions carried by or stored on one or more transitory or non-transitory machine-readable
(e.g., computer-readable) storage medium, which may be read and executed by one or
more processors. A machine-readable storage medium may be embodied as any storage
device, mechanism, or other physical structure for storing or transmitting information
in a form readable by a machine (e.g., a volatile or non-volatile memory, a media
disc, or other media device).
[0026] In the drawings, some structural or method features may be shown in specific arrangements
and/or orderings. However, it should be appreciated that such specific arrangements
and/or orderings may not be required. Rather, in some embodiments, such features may
be arranged in a different manner and/or order than shown in the illustrative figures.
Additionally, the inclusion of a structural or method feature in a particular figure
is not meant to imply that such feature is required in all embodiments and, in some
embodiments, may not be included or may be combined with other features.
[0027] Referring now to FIG. 1, a vehicle 100 may include a compute device 102 and a camera
104. The camera 104 is configured to provide a view of the surroundings of the vehicle,
such as a front-facing camera. In use, the compute device 102 receives one or more
images from the camera 104, such as the image shown in FIG. 2, 2a. The images may
include one or more occlusions on the camera 104, such as the occlusions 202 shown
in FIG. 2, 2a caused by rain drops. The compute device 102 processes the images using
an algorithm that can identify occlusions on the camera using a relative small number
of images, such as one to three images. The compute device 102 may determine occlusions
are present using any suitable algorithm, such as by tracking a change in the optical
flow of the images, by determining regions in the images that are out of focus, by
determining regions of the images without edges, and determining regions of the images
with circular lens artifacts. After determining that occlusions are present, the compute
device 102 may perform a task based on the presence of the occlusions, such as issuing
a command to spray air or water on the occluded surface of the camera 104 or alerting
a driver or passenger in the vehicle of the occlusion. The vehicle 100 may include
a source of compressed air or cleaning fluid reservoir that is positioned to spray
air or cleaning fluid on the camera 104 when issued such a command. In some embodiments,
the compute device 102 may perform certain computer vision tasks at least partly based
on the determined location of the occlusions, such as by ignoring the occluded parts
of the image.
[0028] The occlusion detected may be due to any type of occlusion, such as a water drop,
mud, dirt, organic matter such as insects, etc. The occlusion may be detected on any
suitable surface, such as on a lens of the camera 104, on a cover of the camera 104,
on a windshield of the vehicle 100, etc.
[0029] The camera 104 may be any suitable camera, and may contain one or more lenses and
one or more image sensors. The image sensors of the camera 104 may be any suitable
type of image sensor, such as a charge-coupled device (CCD) image sensor, a complementary
metal-oxide-semiconductor (CMOS) image sensor, and/or other type of image sensor technology.
The camera 104 may have any suitable frame rate, such as 10, 30, 60, or 120 frames
per second. The camera 104 may have any suitable number of pixels, such as 1, 5, 10,
or 20 megapixels. In some embodiments, the camera 104 may be part of the compute device
100, while in other embodiments it may be considered a separate component from the
compute device 100. Although shown in FIG. 1 as being disposed near the front of the
vehicle 100 and facing forward, it should be appreciated that the camera 104 may be
placed in any suitable position and facing any suitable direction. For example, in
some embodiments, a camera 104 may be placed on the side of the vehicle 100, on the
rear of the vehicle 100, near the roof of the vehicle 100, in the interior of the
vehicle 100, etc. Additionally or alternatively, in some embodiments, the camera 104
may be facing a different direction, such as facing to the right, left, or backwards.
In the illustrative embodiment, the camera 104 is oriented level with the ground such
that the horizon is in the center of images captured by the camera 104. Additionally
or alternatively, the camera 104 may be tilted up or down from level with the ground.
More generally, it should be appreciated that the camera can be oriented at any azimuthal
angle from 0° to 360° relative to the vehicle 100 and/or can be oriented at any altitude
angle from -90° to 90° relative to the vehicle 100. In some embodiments, the vehicle
100 may include more than one camera 104, such as one camera 104 on the front, one
camera 104 on the left side, one camera 104 on the right side, and one camera 104
on the rear.
[0030] As shown in FIG. 1, the compute device 100 in the illustrative embodiment is disposed
in the engine compartment of the vehicle 100. In some embodiments, the compute device
100 may be disposed in other parts of the vehicle, such as near the trunk, in the
undercarriage, in the passenger compartment, etc. In some embodiments, the compute
device 100 may be distributed in different areas of the vehicle 100. Additionally
or alternatively, in some embodiments, some or all of the compute device 100 may be
located somewhere other than the vehicle 100, such as a remote compute device 100
that may be located near the vehicle on the side of the road or a compute device 100
in a cloud data center.
[0031] Referring now to FIG. 3, an illustrative compute device 102 may be embodied as any
type of compute device capable of performing the functions described herein. For example,
the compute device 102 may be embodied as or otherwise be included in, without limitation,
an embedded computing system, a System-on-a-Chip (SoC), a multiprocessor system, a
processor-based system, a server computer, a desktop computer, a sled or blade of
a rack, a disaggregated computing system such as a rack scale architecture system,
a smartphone, a cellular phone, a wearable computer, a tablet computer, a notebook
computer, a laptop computer, a handset, a messaging device, a camera device a consumer
electronic device, and/or any other computing device.
[0032] The illustrative compute device 102 includes the processor 302, a memory 304, an
input/output (I/O) subsystem 306, the camera 104, a graphics processing unit (GPU)
308, an accelerator 310, communication circuitry 312, and data storage 314. In some
embodiments, one or more of the illustrative components of the compute device 102
may be incorporated in, or otherwise form a portion of, another component. For example,
the memory 304, or portions thereof, may be incorporated in the processor 302 in some
embodiments.
[0033] The processor 302 may be embodied as any type of processor capable of performing
the functions described herein. For example, the processor 302 may be embodied as
a single or multi-core processor(s), a single or multi-socket processor, a digital
signal processor, a microcontroller, or other processor or processing/controlling
circuit.
[0034] Similarly, the memory 304 may be embodied as any type of volatile or non-volatile
memory or data storage capable of performing the functions described herein. In operation,
the memory 304 may store various data and software used during operation of the compute
device 102 such as operating systems, applications, programs, libraries, and drivers.
The memory 304 is communicatively coupled to the processor 302 via the I/O subsystem
306, which may be embodied as circuitry and/or components to facilitate input/output
operations with the processor 302, the memory 304, and other components of the compute
device 102. For example, the I/O subsystem 306 may be embodied as, or otherwise include,
memory controller hubs, input/output control hubs, firmware devices, communication
links (i.e., point-to-point links, bus links, wires, cables, light guides, printed
circuit board traces, etc.) and/or other components and subsystems to facilitate the
input/output operations. In some embodiments, the I/O subsystem 306 may form a portion
of a system-on-a-chip (SoC) and be incorporated, along with the processor 302, the
memory 304, and other components of the compute device 102 on a single integrated
circuit chip.
[0035] The GPU 308 may be embodied as any device or circuitry (e.g., a programmable logic
chip, a processor, etc.) configured to perform graphics-related computations (e.g.,
matrix multiplication, vector operations, etc.). The accelerator 310 may be embodied
as any device or circuitry that is configured to perform particular computing operations.
For example, the accelerator 310 may be a vision processing unit that is configured
to perform operations related to machine vision, machine learning, and artificial
intelligence. The accelerator 310 may be embodied as a programmable chip, an application
specific integrated circuit (ASIC), a field programmable gate array (FPGA), and/or
any combination of the above.
[0036] The communication circuitry 312 may be embodied as any type of interface capable
of interfacing the compute device 102 with one or more remote devices or networks.
The communication circuitry 312 may also be referred to or be embodied as a network
interface controller (NIC). The communication circuitry 312 may be capable of interfacing
with any appropriate cable type, such as an electrical cable or an optical cable.
The communication circuitry 312 may be configured to use any one or more communication
technology and associated protocols (e.g., controller-area network (CAN), local interconnect
network (LIN), Ethernet, Bluetooth®, Wi-Fi®, WiMAX, near field communication (NFC),
Omni-Path, etc.). Furthermore, in some embodiments, the communication circuitry 312
may be in a package separate from the processor 302, in a multi-chip package with
the processor 302, or in a system-on-a-chip with the processor 302. In some embodiments,
the compute device 102 may communicate with the camera 104 with use of the communication
circuitry.
[0037] The data storage 314 may be embodied as any type of device or devices configured
for the short-term or long-term storage of data. For example, the data storage 314
may include any one or more memory devices and circuits, memory cards, hard disk drives,
solid-state drives, or other data storage devices.
[0038] Of course, in some embodiments, the compute device 102 may include additional components
often found in a compute device 102, such one or more peripheral devices 316. The
peripheral devices 316 may include a display, a keyboard, a mouse, speakers, etc.
The display may be embodied as any type of display on which information may be displayed
to a user of the compute device 102, such as a liquid crystal display (LCD), a light
emitting diode (LED) display, a cathode ray tube (CRT) display, a plasma display,
an image projector (e.g., 2D or 3D), a laser projector, a touchscreen display, a heads-up
display, and/or other display technology.
[0039] Referring now to FIG. 4, in an illustrative embodiment, the compute device 102 establishes
an environment 400 during operation. The illustrative environment 400 includes an
occlusion detection module 402, an algorithm parameter determination module 404, an
occlusion removal module 406, a driver assist module 408, and a communication engine
410. The various components of the environment 400 may be embodied as hardware, software,
firmware, or a combination thereof. For example, the various components of the environment
400 may form a portion of, or otherwise be established by, the processor 302, the
memory 304, or other hardware components of the compute device 102. As such, in some
embodiments, one or more of the components of the environment 400 may be embodied
as circuitry or collection of electrical devices (e.g., occlusion detection circuitry
402, algorithm parameter determination circuitry 404, occlusion removal circuitry
406, etc.). It should be appreciated that, in such embodiments, one or more of the
circuits (e.g., the occlusion detection circuitry 402, the algorithm parameter determination
circuitry 404, the occlusion removal circuitry 406, etc.) may form a portion of one
or more of the processor 302, the memory 304, the I/O subsystem 306, the communication
circuitry 312, the data storage 314, an application specific integrated circuit (ASIC),
a programmable circuit such as a field-programmable gate array (FPGA), and/or other
components of the compute device 102. For example, the occlusion detection circuitry
402 may be embodied as the processor 302 and associated instructions stored on the
data storage 314 and/or the memory 304 that may be executed by the processor 302.
Additionally, in some embodiments, one or more of the illustrative components may
form a portion of another component and/or one or more of the illustrative components
may be independent of one another. Further, in some embodiments, one or more of the
components of the environment 400 may be embodied as virtualized hardware components
or emulated architecture, which may be established and maintained by the processor
302 or other components of the compute device 102. It should be appreciated that some
of the functionality of one or more of the components of the environment 400 may require
a hardware implementation, in which case embodiments of components which implement
such functionality will be embodied at least partially as hardware.
[0040] The occlusion detection module 402, which may be embodied as hardware (e.g., circuitry),
firmware, software, virtualized hardware, emulated architecture, and/or a combination
thereof as discussed above, is configured to detect occlusions in images from the
camera 104. The occlusion detection module includes an image pre-processor 412, an
optical flow analyzer 414, a blurriness analyzer 416, an edge detection analyzer 418,
and a lens artifact analyzer 420. The occlusion detection module 402 is configured
to use its various sub-modules to process images and determine whether occlusions
are present in the images.
[0041] The image pre-processor 412 is configured to pre-process images from the camera 104.
The image pre-processor 412 may convert the images to grayscale. The image pre-processor
412 may also apply a mask to images. The mask may block certain regions of the images
that should be ignored or otherwise treated differently during processing. For example,
in some embodiments, the sky 204 as shown in FIG. 2, 2a may be incorrectly interpreted
as an occluded region. As such, the image pre-processor 412 may apply a mask to block
out some or all of the sky 204. In some embodiments, the image pre-processor 412 may
resize images prior to the images being analyzed by other components of the occlusion
detection module 402.
[0042] The optical flow analyzer 414 is configured to analyze images using an optical flow
algorithm. The optical flow analyzer 414 may calculate optical flows between two images
using any suitable method, such as the Farnebeck method. It should be appreciated
that the optical flow calculation provides an indication of a direction of apparent
movement for objects in the field of view of the camera 104. For example, a lane dividing
marker on the road may be determined to be moving at the same speed as a vehicle 100,
while another vehicle that is being overtaken by the vehicle 100 with the camera 104
may be determined to be moving at a slower speed than the vehicle 100.
[0043] The optical flow analyzer 414 may determine a stationary score for each pixel of
an optical flow calculation by comparing the magnitude of the optical flow vector
for each pixel against a predetermined threshold. In some embodiments, the threshold
may depend on the size of the image (either the original image or the image as resized
by the image pre-processor 412). If the magnitude of the optical flow vector is above
the predetermined threshold, then the optical flow analysis suggests the pixel is
moving. If the magnitude of the optical flow vector is below the predetermined threshold,
then the optical flow analysis suggests the pixel is not moving.
[0044] The optical flow analyzer may also determine a chaos score based on two optical flow
calculations by determining a difference between the optical flow vector for each
pixel. If the magnitude of the difference in optical flow vectors is above a predetermined
threshold, then the optical flow analysis suggests the optical flow of the pixel is
chaotic and does not accurately correspond to particular point in the real world but
is instead is being distorted by an occlusion on the camera 104. If the magnitude
of the difference in optical flow vectors is below the predetermined threshold, then
the optical flow analysis suggests the pixel accurately corresponds to a particular
point in the real world and is not occluded.
[0045] The blurriness analyzer 416 is configured to analyze images by determining regions
of the images that are blurry. The blurriness analyzer 416 may divide the image being
analyzed into several smaller subimages. For example, the blurriness analyzer 416
may divide the image into hundreds, thousands, or tens of thousands of smaller subimages.
In the illustrative embodiment, each subimage is a square with a dimension of 10-15
pixels per side (for a total of 100 to 225 pixels per subimage). Additionally or alternatively,
in some embodiments, each subimage may be a different shape such as a rectangle with
any suitable dimensions, such as 5 to 100 pixels per side. The blurriness analyzer
416 may then calculates a blurriness score for each smaller subimage. The compute
device 102 may calculate a blurriness score using any suitable calculation, such as
by using the normalized Sobel method in the X and Y dimensions. If a subimage has
a high blurriness score, then that subimage is likely to be occluded, such as by a
water droplet that is blurring the image created on the camera 104.
[0046] The edge detection analyzer 418 is configured to analyze images by performing an
edge detection algorithm on them. The edge detection analyzer 418 may apply any suitable
edge detection algorithm, such as Canny edge detection. The edge detection analyzer
418 may expand the detected edges by a predetermined amount. For example, if the edges
in block 802 are each 1 pixel wide, the edge detection analyzer 418 may expand each
edge by 10 pixels in all directions. In other embodiments, the edge detection analyzer
418 may expand each edgy by a different number of pixels, such as anywhere from 1-100
pixels. As various features in the real world that are being imaged are likely to
have a high density of edges (such as cracks in the road, road lines, road signs,
trees, other vehicles, etc.), applying an edge detection algorithm and then expanding
the edges will likely cover most or all of the imaged objects. However, occlusions
are likely to lead to portions of an image that have no edges or have a low density
of edges. The edge detection analyzer 418 may determine areas of the image that does
not have any expanded edges or has an edge density below a predetermined threshold,
which suggests the presence of an occlusion.
[0047] The lens artifact analyzer 420 is configured to analyze images by identifying circular
lens artifacts. It should be appreciated that, at night, certain occlusions such as
water drops may create circular or near-circular lens artifacts from various light
sources such as headlights, streetlights, stop lights, etc. Detection of those artifacts
can indicate an occlusion.
[0048] The lens artifact analyzer 420 may apply any suitable edge detection algorithm, such
as Canny edge detection. The lens artifact analyzer 420 expands the edges by a predetermined
amount. For example, if the edges in block 902 are each 1 pixel wide, the compute
device 102 may expand each edge by 3 pixels in all directions. In other embodiments,
the compute device 102 may expand each edgy by a different number of pixels, such
as anywhere from 1-100 pixels. As artifacts caused by occlusions are likely to create
or nearly create a full loop of edges, expanding the edges is likely to complete some
of the loops, making detection easier.
[0049] The lens artifact analyzer 420 identifies contours in the edges. A contour is an
edge that fully encloses an area. For example, an edge that loops around in a circle
or near circle would form a contour. The lens artifact analyzer 420 calculates an
area enclosed by each contour. The lens artifact analyzer 420 then discards area that
are below a predetermined threshold. The lens artifact analyzer 420 calculates the
area of the smallest circle that encloses each of the remaining contours and determines
a ratio of the area of the determined circle to the area enclosed by the corresponding
contour. A high ratio (i.e., a ratio close to one) indicates that the contour is nearly
circular. A low ratio (i.e., a ratio close to zero) indicates that the contour is
nearly circular. The lens artifact analyzer 420 discards areas where the determined
ratio is less than a predetermined threshold. The threshold may be any suitable value,
such as any value from 0.1-0.9. Areas with a ratio above the threshold indicate the
presence of an occlusion.
[0050] The occlusion detection module 402 may use the various scores of pixel, subimages,
or regions of the images to determine if occlusions are present. The occlusion detection
module 402 may use one, some, or all of the indications provided by the various submodules.
The occlusion detection module 402 may keep track of time-based parameters indicating
the presence of occlusions in pixels, subimages, or regions of images, updating the
time-based parameters as it receives new analysis of images from the submodules. It
should be appreciated that, in some embodiments, the occlusion detection module 402
may detect occlusions based on as few as one, two, or three images from the camera
104.
[0051] The algorithm parameter determination module 404 is configured to determine parameters
that can be used by the occlusion detection module 402 to detect occlusions. The occlusion
detection module 402 may accesses training data. In the illustrative embodiment, the
training data is embodied as labeled training data indicating where occlusions are
in training images. It should be appreciated that the training data may include images
without occlusions. Additionally or alternatively, in some embodiments, the training
data may be include unlabeled training data of training images with and without occlusions
where the occlusions are not labeled.
[0052] The occlusion detection module 402 determines algorithm parameters based on the training
data. The occlusion detection module 402 may determine parameters for an optical flow
occlusion detection algorithm, such as thresholds for a flow magnitude indicating
a stationary pixel and for a difference in flow magnitude indicating a chaotic point.
The occlusion detection module 402 may determine parameters for a blurriness occlusion
detection algorithm, such as a threshold to use for a blurriness score for a region
to have a detected occlusion. The occlusion detection module 402 may determine parameters
for an edge detection-based occlusion detection algorithm, such as an amount to expand
edges by and a threshold for edge density indicative of an occlusion. The compute
device occlusion detection module 402 may determine parameters for a circular lens
artifact occlusion detection algorithm, such as an amount to expand edges by, a threshold
area enclosed by a contour to consider a candidate occlusion, and a threshold ratio
between the area enclosed by a contour and the smallest circle that can surround the
contour. The occlusion detection module 402 may also use the training data to train
a convolutional neural network that can be used to predict where occlusions are. The
occlusion detection module 402 then stores the algorithm parameters in the compute
device 102 for later use. It should be appreciated that, in some embodiments, the
occlusion detection module 402 may be located remote from the vehicle 100, and the
parameters may be determined prior to operation of the vehicle 100.
[0053] The occlusion removal module 406 is configured to control a hardware component that
can clean the camera 104, such as compressed air, a source of cleaning fluid, a wiper,
etc. The occlusion removal module 406 may receive a command from the occlusion detection
module 402 to clean the camera 104 or a certain portion of the camera 104 and then
clean the camera 104 accordingly.
[0054] The driver assist module 408 is configured to provide certain driver assist functions,
such as lane centering, automatic cruise control, lane changing, etc. The driver assist
module 408 may analyze images from the camera 104 as part of providing driver assist
functions, such as by determining a location of other vehicles or a location of lane
markings. The driver assist module 408 is configured to analyze images from the camera
104 at least in part based on the occlusions detected by the occlusion detection module
402, such as by ignoring the regions of the image that are occluded.
[0055] The communication engine 410 is configured to control the communication circuitry
312. The communication engine 410 processes incoming messages from other compute devices
as well as instructions from the local compute device 102 and outgoing messages from
the local compute device 102. The communication engine 410 may be configured to use
any one or more communication technology and associated protocols (e.g., CAN, LIN,
Ethernet, Bluetooth®, Wi-Fi®, WiMAX, near field communication (NFC), etc.).
[0056] Referring now to FIG. 5, in use, the compute device 100 may execute a method 500
for detecting occlusions on a camera 104 of a vehicle 100. The method 500 begins in
block 502, in which the compute device 102 determines parameters for an algorithm
to detect occlusions based on the current conditions. For example, the compute device
102 may access parameters based on a current weather condition (raining, snowing,
cloudy, sunny, etc.), current road conditions (wet, dry, pavement type, etc.), current
lighting conditions (direct sunlight, clear sky, overcast, nighttime, etc.), or any
other relevant condition. The compute device 102 may access the parameters by retrieving
them from storage, by receiving them from a remote compute device, or in any other
suitable manner.
[0057] In block 504, the compute device 102 receives one or more images from a camera 104
of a vehicle 100. In the illustrative embodiment, the compute device 102 receives
a series of consecutive images from the camera 104 that are generated at a particular
framerate. For example, if the camera 104 generates images at a rate of 30 frames
per second, the compute device 102 may receive an image from the camera 104 about
every 33 milliseconds.
[0058] In the illustrative embodiment, the compute device 102 converts the one or more images
to grayscale in block 506. Additionally or alternatively, the compute device 102 may
proceed with processing color images or the images may already be grayscale.
[0059] In block 508, in some embodiments, the compute device 102 applies a mask to the one
or more images. The mask may block certain regions of the one or more images that
should be ignored or otherwise treated differently during processing. For example,
in some embodiments, the sky 204 as shown in FIG. 2, 2a may be interpreted as an occluded
region. As such, the compute device 102 may apply a mask to block out some or all
of the sky 204.
[0060] In block 510, the compute device 102 processes the one or more images by applying
an algorithm to detect occlusions on the camera 104 shown in the one or more images.
The compute device 102 may process the images by determining a change in the optical
flow in block 512, as described in more detail below in regard to FIG. 6. The compute
device 102 may process the images by determining one or more regions that are out
of focus in block 514, as described in more detail below in regard to FIG. 7. The
compute device 102 may process the images based on edge detection in block 516, as
described in more detail below in regard to FIG. 8. The compute device 102 may process
the images by detecting one a change in the optical flow in block 518, as described
in more detail below in regard to FIG. 9. It should be appreciated that, in various
embodiments, the compute device 102 may use any combination of the approaches described
in blocks 512-518 and FIGS. 6-9.
[0061] In block 520, the compute device 102 determines one or more occlusions on the camera
104 of the vehicle 100 based on the processing of the images in block 510. The compute
device 102 may determine occlusions are present based on a change in the optical flow
in block 522. For example, if a pixel or region of the one or more images has a stationary
score that is below a predetermined threshold or a chaos score that is above a predetermined
threshold, that pixel or region of the one or more images may be determined to be
occluded. The stationary score and chaos score are described in more detail below
in regard to FIG. 6.
[0062] The compute device 102 may determine that occlusions are present based on a blurriness
of regions of the one or more images in block 524. For example, if a time-based blurriness
score corresponding to a subimage of the one or more images is above a predetermined
threshold, that subimage may be determined to be occluded. The time-based blurriness
score is described in more detail below in regard to FIG. 7.
[0063] The compute device 102 may determine that occlusions are present based on edges detected
in the one or more images in block 526. For example, if there is a region that does
not have any edges or only have density of edges that is below a predetermined threshold,
that region may be determined to be occluded. Analysis of the edge detection is described
in more detail below in regard to FIG. 8.
[0064] The compute device 102 may determine that occlusions are present based on the presence
of circular lens artifacts in block 528. For example, if a time-based circular artifact
score for a certain region is above a threshold, that region may be determined to
be occluded. The time-based circular artifact score is described in more detail below
in regard to FIG. 9.
[0065] In block 530, the compute device 102 may perform a task based on the determined occlusions.
For example, in block 532, the compute device may send a command to clean the camera
104 with air or water. In some embodiments, the compute device 102 may perform certain
computer vision tasks at least partly based on the determined location of the occlusions
in block 534, such as by ignoring the occluded parts of the image. The method 500
then loops back to block 504 to receive more images from the camera 104.
[0066] Referring now to FIG. 6, the compute device 102 may perform a method 600 for analyzing
one or more images using an optical flow measurement. The method 600 begins in optional
block 602 in which the compute device 102 resizes the one or more images. The compute
device 102 may resize the one or more images to make the image processing faster or
more efficient.
[0067] In block 604, the compute device 102 calculates an optical flow based on a first
image and a second image of the one or more images. In the illustrative embodiment,
the first image and the second images are consecutive images received from the camera
104. Additionally or alternatively, in some embodiments, the first and second image
may not be consecutive images received from the camera 104. The optical flow may be
calculated using any suitable method, such as the Farnebeck method. It should be appreciated
that the optical flow calculation provides an indication of a direction of apparent
movement for objects in the field of view of the camera 104. For example, a lane dividing
marker on the road may be determined to be moving at the same speed as a vehicle 100,
while another vehicle that is being overtaken by the vehicle 100 with the camera 104
may be determined to be moving at a slower speed than the vehicle 100.
[0068] In block 606, the compute device 102 calculates an optical flow based on the second
image and a third image of the one or more images. In the illustrative embodiment,
the second image and the first images are consecutive images received from the camera
104 (and the first, second, and third images are all consecutive). Additionally or
alternatively, in some embodiments, the second and third image may not be consecutive
images received from the camera 104.
[0069] In block 608, the compute device 102 determines a stationary score for each pixel
of the two optical flow calculations by comparing the magnitude of the optical flow
vector for each pixel against a predetermined threshold. In some embodiments, the
threshold may depend on the size of the image (either the original image or the image
as resized on block 602). If the magnitude of the optical flow vector is above the
predetermined threshold, then the optical flow analysis suggests the pixel is moving.
If the magnitude of the optical flow vector is below the predetermined threshold,
then the optical flow analysis suggests the pixel is not moving.
[0070] In block 610, the compute device 102 may update a time-based stationary score that
is stored in the compute device 102 for each pixel. If the magnitude of the optical
flow is below a predetermined threshold, then the time-based stationary score is increased
by a predetermined amount. If the magnitude of the optical flow is above the predetermined
threshold, then the time-based stationary score is decreased by a predetermined amount.
In some embodiments, the predetermined amount that the time-based stationary score
is changed by may depend on the size of the image (either the original image or the
image as resized on block 602). The compute device 102 may impose a maximum and a
minimum value on the time-based stationary score in order to prevent reacting slowly
to future changes. It should be appreciated that, in some embodiments, a stationary
score may be determined based on a single optical flow measurement (i.e., based on
only two images).
[0071] In block 610, the compute device 102 determines a chaos score based on the two optical
flow calculations by determining a difference between the optical flow vector for
each pixel. If the magnitude of the difference in optical flow vectors is above a
predetermined threshold, then the optical flow analysis suggests the optical flow
of the pixel is chaotic and does not accurately correspond to particular point in
the real world but is instead is being distorted by an occlusion on the camera 104.
If the magnitude of the difference in optical flow vectors is below the predetermined
threshold, then the optical flow analysis suggests the pixel accurately corresponds
to a particular point in the real world and is not occluded.
[0072] In block 612, the compute device 102 may update a time-based chaos score that is
stored in the compute device 102 for each pixel. If the magnitude of the difference
in optical flow is below a predetermined threshold, then the time-based chaos score
is decreased by a predetermined amount. If the magnitude of the difference in the
optical flow is above the predetermined threshold, then the time-based chaos score
is increased by a predetermined amount. In some embodiments, the predetermined amount
that the time-based chaos score is changed by may depend on the size of the image
(either the original image or the image as resized on block 602). The compute device
102 may impose a maximum and a minimum value on the time-based chaos score in order
to prevent reacting slowly to future changes.
[0073] It should be appreciated that the stationary score, the time-based stationary, the
chaos score, and/or the time-based chaos score may be used to determine the presence
of an occlusion in block 522 of the method 500 shown in FIG. 5, such as by comparing
the various scores to a predetermined threshold. It should be appreciated that, after
the initial optical flow and differences in optical flow is determined, both the optical
flow and the difference in optical flow may be updated based on one new image by analyzing
the new image together with one or two previous images.
[0074] Referring now to FIG. 7, in use, the compute device 102 may perform a method 700
for analyzing one or more images using a blurriness calculation. The method 700 begins
in block 702 in which the compute device 102 divides the image being analyzed into
several smaller subimages. For example, the compute device 102 may divide the image
into hundreds, thousands, or tens of thousands of smaller subimages. In the illustrative
embodiment, each subimage is a square with a dimension of 10-15 pixels per side (for
a total of 100 to 225 pixels per subimage). Additionally or alternatively, in some
embodiments, each subimage may be a different shape such as a rectangle with any suitable
dimensions, such as 5 to 100 pixels per side.
[0075] In block 704, the compute device 102 calculates a blurriness score for each smaller
subimage. The compute device 102 may calculate a blurriness score using any suitable
calculation, such as by using the normalized Sobel method in the X and Y dimensions.
If a subimage has a high blurriness score, then that subimage is likely to be occluded,
such as by a water droplet that is blurring the image created on the camera 104.
[0076] In block 706, the compute device 102 may update a time-based blurriness score that
is stored in the compute device for each pixel. If the blurriness score is below a
predetermined threshold, then the time-based blurriness score is decreased by a predetermined
amount. If the blurriness score is above the predetermined threshold, then the time-based
blurriness score is increased by a predetermined amount. The compute device 102 may
impose a maximum and a minimum value on the time-based blurriness score in order to
prevent reacting slowly to future changes.
[0077] It should be appreciated that the blurriness score and/or the time-based blurriness
score may be used to determine the presence of an occlusion in block 524 of the method
500 shown in FIG. 5, such as by comparing the blurriness score and/or the time-based
blurriness score to a predetermined threshold.
[0078] Referring now to FIG. 8, in use, the compute device 102 may perform a method 800
for analyzing one or more images using edge detection. The method 800 begins in block
802 in which the compute device 102 applies an edge detection algorithm to the image.
The compute device 102 may apply any suitable edge detection algorithm, such as Canny
edge detection.
[0079] In block 804, the compute device 102 expands the edges by a predetermined amount.
For example, if the edges in block 802 are each 1 pixel wide, the compute device 102
may expand each edge by 10 pixels in all directions. In other embodiments, the compute
device 102 may expand each edgy by a different number of pixels, such as anywhere
from 1-100 pixels. As various features in the real world that are being imaged are
likely to have a high density of edges (such as cracks in the road, road lines, road
signs, trees, other vehicles, etc.), applying an edge detection algorithm and then
expanding the edges will likely cover most or all of the imaged objects. However,
occlusions are likely to lead to portions of an image that have no edges or have a
low density of edges.
[0080] In block 806, the compute device 102 determines areas of the image that does not
have any expanded edges or has an edge density below a predetermined threshold. In
block 808, the compute device 102
[0081] In block 808, the compute device 102 may update a time-based edge density score that
is stored in the compute device for each region of the image. If the edge density
is below a predetermined threshold, then the time-based edge density score is decreased
by a predetermined amount. If the edge density score is above the predetermined threshold,
then the time-based edge density score is increased by a predetermined amount. The
compute device 102 may impose a maximum and a minimum value on the time-based edge
density score in order to prevent reacting slowly to future changes.
[0082] It should be appreciated that the edge density and/or the time-based edge density
score may be used to determine the presence of an occlusion in block 526 of the method
500 shown in FIG. 5, such as by comparing the edge density and/or the time-based edge
density score to a predetermined threshold.
[0083] Referring now to FIG. 9, in use, the compute device 102 may perform a method 900
for analyzing one or more images to look for circular lens artifacts. The method 900
begins in block 902 in which the compute device 102 applies an edge detection algorithm
to the image. The compute device 102 may apply any suitable edge detection algorithm,
such as Canny edge detection.
[0084] In block 904, the compute device 102 expands the edges by a predetermined amount.
For example, if the edges in block 902 are each 1 pixel wide, the compute device 102
may expand each edge by 3 pixels in all directions. In other embodiments, the compute
device 102 may expand each edgy by a different number of pixels, such as anywhere
from 1-100 pixels. As artifacts caused by occlusions are likely to create or nearly
create a full loop of edges, expanding the edges is likely to complete some of the
loops, making detection easier.
[0085] In block 906, the compute device 102 identifies contours in the edges. A contour
is an edge that fully encloses an area. For example, an edge that loops around in
a circle or near circle would form a contour.
[0086] In block 908, the compute device 102 calculates an area enclosed by each contour.
The compute device 102 then discards area that are below a predetermined threshold
in block 910.
[0087] In block 912, the compute device 102 calculates the area of the smallest circle that
encloses each of the remaining contours. The compute device determines a ratio of
the area of the determined circle to the area enclosed by the corresponding contour
in block 916. A high ratio (i.e., a ratio close to one) indicates that the contour
is nearly circular. A low ratio (i.e., a ratio close to zero) indicates that the contour
is nearly circular. In block 916, the compute device 102 discards areas where the
determined ratio is less than a predetermined threshold. The threshold may be any
suitable value, such as any value from 0.1-0.9.
[0088] In block 918, the compute device 102 updates a circular artifact score corresponding
to the areas of the image where the determined ratio is above the predetermined threshold.
If the ratio is below a predetermined threshold, then the circular artifact score
is decreased by a predetermined amount. If the ratio is above the predetermined threshold,
then the circular artifact score is increased by a predetermined amount. The compute
device 102 may impose a maximum and a minimum value on the time-based circular artifact
score in order to prevent reacting slowly to future changes.
[0089] It should be appreciated that the determined ratio and/or the circular artifact score
may be used to determine the presence of an occlusion in block 528 of the method 500
shown in FIG. 5, such as by comparing the ratio and/or the circular artifact score
to a predetermined threshold.
[0090] It should be appreciated that the analysis described in FIGS. 6-9 is merely one possible
approach to implementing algorithms using the techniques described herein and that,
in some embodiments, different variations techniques may be used. For example, the
various scores and time-based scores may be calculated using different techniques,
such as using a moving average, a weighted moving average, an exponential moving average,
a machine-learning-based algorithm, etc. As another example, pixels may be grouped
together when performing certain calculations such as an optical flow, instead of
performing the calculations on each individual pixel. In some embodiments, some of
the parameters calculated as described above (such as detected edges, differences
of optical flow, detected blurriness, and detected circular artifacts) may be provided
as input to a machine-learning-based algorithm, which may then predict where occlusions
are.
[0091] Referring now to FIG. 10, in use, the compute device 102 may perform a method 1000
for determining parameters for occlusion detection algorithms. The method 1000 begins
in block 1002 in which the compute device 102 accesses training data. In the illustrative
embodiment, the training data is embodied as labeled training data indicating where
occlusions are in training images. It should be appreciated that the training data
may include images without occlusions. Additionally or alternatively, in some embodiments,
the training data may be include unlabeled training data of training images with and
without occlusions where the occlusions are not labeled.
[0092] In block 1004, the compute device 102 determines algorithm parameters based on the
training data. The compute device 102 may determine parameters for an optical flow
occlusion detection algorithm in block 1006, such as thresholds for a flow magnitude
indicating a stationary pixel and for a difference in flow magnitude indicating a
chaotic point. The compute device 102 may determine parameters for a blurriness occlusion
detection algorithm in block 1008, such as a threshold to use for a blurriness score
for a region to have a detected occlusion. The compute device 102 may determine parameters
for an edge detection-based occlusion detection algorithm in block 1010, such as an
amount to expand edges by and a threshold for edge density indicative of an occlusion.
The compute device 102 may determine parameters for a circular lens artifact occlusion
detection algorithm in block 1012, such as an amount to expand edges by, a threshold
area enclosed by a contour to consider a candidate occlusion, and a threshold ratio
between the area enclosed by a contour and the smallest circle that can surround the
contour. The compute device 102 may also use the training data to train a convolutional
neural network in block 1014 that can be used to predict where occlusions are. The
compute device 102 then stores the algorithm parameters in block 1016.
[0093] It should be appreciated that the parameters determined in the method 1000 can be
determined prior to operation of the vehicle 100. In particular, the parameters can
be determined remotely from the compute device 102 in the vehicle 100, such as at
a remote server, and then sent to the compute device 102 for future use.
[0094] Referring now to FIGS. 11 &12, in one example, a picture in FIG. 11, 11a shows sample
optical flow values for certain regions of the picture, represented by shaded regions
such as shaded regions 1102. FIG. 12, 12a shows a sample optical flow for a subsequent
picture with shaded regions such as shaded regions 1202. The differences in the shaded
regions indicates differences in the optical flow values.
[0095] Referring now to FIG. 13, 13a, in one example, a picture shown in FIG. 13, 13a shows
a blurry region 1302 due to an occlusion. Several subimages such as subimage 1304
have been analyzed and determined to be blurry. The burry subimages or clusters of
the blurry subimages may be interpreted as occlusions. It should be appreciated that,
in certain cases, some areas such as the sky may be incorrectly determined to be blurry
due to a lack of features. For that reason, the sky may be masked out of the image
to prevent false positives.
[0096] Referring now to FIGS. 14, 14a & 15, 15a, in one example, a picture shown in FIG.
14, 14a shows a region 1402 that includes an occlusion. FIG. 15, 15a shows that, upon
edge detection, the region 1402 with the occlusion has a low density of edges.
[0097] Referring now to FIGS. 16, 16a & 17, in one example, a picture shown in FIG. 16,
16a shows circular lens artifacts such as circular lens artifact 1602. The image is
analyzed as described above in regard to FIG. 9 by determining contours that enclose
approximately circular areas. The areas that are determined to be enclosed by an approximately
circular contour of appropriate size are shown in FIG. 17, such as contour area 1702.
[0098] The following numbered clauses include embodiments that are contemplated and non-limiting:
Clause 1. A compute device for detection of occlusions on a camera of a vehicle, the
compute device comprising: the camera.
Clause 2. The compute device of clause 1, any other suitable clause, or any suitable
combination of clauses, further comprising an occlusion detection module.
Clause 3. The compute device of clause 2, any other suitable clause, or any suitable
combination of clauses, wherein the occlusion detection module receives one or more
images from the camera of the vehicle.
Clause 4. The compute device of clause 3, any other suitable clause, or any suitable
combination of clauses, wherein the occlusion detection module processes the one or
more images.
Clause 5. The compute device of clause 4, any other suitable clause, or any suitable
combination of clauses, wherein to process the one or more images comprises at least
one of determine a change in optical flow based on three images of the one or more
images.
Clause 6. The compute device of clause 5, any other suitable clause, or any suitable
combination of clauses, wherein to process the one or more images comprises at least
one of determine one or more regions of at least one image of the one or more images
that are out of focus.
Clause 7. The compute device of clause 6, any other suitable clause, or any suitable
combination of clauses, wherein to process the one or more images comprises at least
one of perform edge detection on at least one image of the one or more images.
Clause 8. The compute device of clause 7, any other suitable clause, or any suitable
combination of clauses, wherein to process the one or more images comprises at least
one of detect one or more circular lens artifacts in at least one image of the one
or more images.
Clause 9. The compute device of clause 8, any other suitable clause, or any suitable
combination of clauses, wherein the occlusion detection module determines, based on
the one or more images, one or more occlusions on the camera of the vehicle.
Clause 10. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to process
one image, wherein to determine, based on the one or more images, the one or more
occlusions on the camera of the vehicle comprises to determine, based only on the
one image from the camera, the one or more occlusions on the camera of the vehicle.
Clause 11. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to process
no more than three images, wherein to determine, based on the one or more images,
the one or more occlusions on the camera of the vehicle comprises to determine, based
only on no more than three images from the camera, the one or more occlusions on the
camera of the vehicle.
Clause 12. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to determine
the change in optical flow based on the three images of the one or more images, wherein
to determine the change in optical flow based on the three images comprises: determine
a first optical flow between a first image of the three images and a second image
of the three images; determine a second optical flow between the second image and
a third image of the three images; and determine a difference in optical flow magnitude
between the first optical flow and the second optical flow for each of a plurality
of pixels, wherein to determine, based on the one or more images, the one or more
occlusions on the camera of the vehicle comprises to determine, based on the difference
in optical flow magnitude between the first optical flow and the second optical flow
for each of a plurality of pixels, the one or more occlusions on the camera of the
vehicle.
Clause 13. The compute device of clause 12, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images further comprises
to determine a stationary score for each of the plurality of pixels based on the first
optical flow, wherein the stationary score for each of the plurality of pixels indicates
a magnitude of optical flow in the first optical flow for the corresponding pixel,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on the stationary score
for each of the plurality of pixels, the one or more occlusions on the camera of the
vehicle.
Clause 14. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to determine
the one or more regions of the at least one image that are out of focus, wherein to
determine the one or more regions the at least one image that are out of focus comprises:
divide the at least one image into a plurality of subimages; and determine, for each
of the plurality of subimages, whether the corresponding subimage is blurry, wherein
to determine, based on the one or more images, the one or more occlusions on the camera
of the vehicle comprises to determine, based on a determination of whether each of
the plurality of subimages is blurry, the one or more occlusions on the camera of
the vehicle.
Clause 15. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to perform
edge detection on the at least one image of the one or more images, wherein to process
the one or more images further comprises: expand each of a plurality of edges identified
in the at least one image during edge detection; and determine areas of at least one
image without expanded edges, wherein to determine, based on the one or more images,
the one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of areas of the at least one image without expanded edges, the
one or more occlusions on the camera of the vehicle.
Clause 16. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, wherein to process the one or more images comprises to detect
one or more circular lens artifacts in the at least one image of the one or more images,
wherein to detect one or more circular lens artifacts in the at least one image comprises:
perform edge detection of the at least one image; identify each of a plurality of
contours defined by edge detection; and determine, for each of the plurality of contours,
a ratio of a circle enclosing the corresponding contour to an area enclosed by the
corresponding contour, wherein to determine, based on the one or more images, the
one or more occlusions on the camera of the vehicle comprises to determine, based
on a determination of the ratios for each of the plurality of contours.
Clause 17. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, further comprising selecting, based on one or more current
conditions of the vehicle, one or more parameters of an occlusion detection algorithm.
Clause 18. The compute device of clause 9, any other suitable clause, or suitable
combination of clauses, further comprising applying a mask to the one or more images
to block the sky.
Clause 19. A method for detection of occlusions on a camera of a vehicle, the method
comprising: receiving, by a compute device, one or more images from the camera of
the vehicle.
Clause 20. The method of clause 19, any other suitable clause, or any combination
of suitable clauses, further comprising processing, by the compute device, the one
or more images.
Clause 21. The method of clause 20, any other suitable clause, or any combination
of suitable clauses, wherein processing the one or more images comprises at least
one of determining a change in optical flow based on three images of the one or more
images.
Clause 22. The method of clause 21, any other suitable clause, or any combination
of suitable clauses, wherein processing the one or more images comprises at least
one of determining one or more regions of at least one image of the one or more images
that are out of focus.
Clause 23. The method of clause 22, any other suitable clause, or any combination
of suitable clauses, wherein processing the one or more images comprises at least
one of performing edge detection on at least one image of the one or more images.
Clause 24. The method of clause 23, any other suitable clause, or any combination
of suitable clauses, wherein processing the one or more images comprises at least
one of detecting one or more circular lens artifacts in at least one image of the
one or more images.
Clause 25. The method of clause 24, any other suitable clause, or any combination
of suitable clauses, further comprising determining, by the compute device and based
on the one or more images, one or more occlusions on the camera of the vehicle.
Clause 26. The method of clause 25, any other suitable clause, or suitable combination
of clauses, wherein processing the one or more images comprises determining the change
in optical flow based on the three images of the one or more images, wherein determining
the change in optical flow based on the three images comprises: determining, by the
compute device, a first optical flow between a first image of the three images and
a second image of the three images; determining, by the compute device, a second optical
flow between the second image and a third image of the three images; and determining,
by the compute device, a difference in optical flow magnitude between the first optical
flow and the second optical flow for each of a plurality of pixels, wherein determining,
based on the one or more images, the one or more occlusions on the camera of the vehicle
comprises determining, based on the difference in optical flow magnitude between the
first optical flow and the second optical flow for each of a plurality of pixels,
the one or more occlusions on the camera of the vehicle.
Clause 27. The method of clause 25, any other suitable clause, or suitable combination
of clauses, wherein processing the one or more images comprises determining the one
or more regions of the at least one image that are out of focus, wherein determining
the one or more regions the at least one image that are out of focus comprises: dividing,
by the compute device, the at least one image into a plurality of subimages; and determining,
by the compute device and for each of the plurality of subimages, whether the corresponding
subimage is blurry, wherein determining, based on the one or more images, the one
or more occlusions on the camera of the vehicle comprises determining, based on a
determination of whether each of the plurality of subimages is blurry, the one or
more occlusions on the camera of the vehicle.
Clause 28. The method of clause 25, any other suitable clause, or suitable combination
of clauses, wherein processing the one or more images comprises performing edge detection
on the at least one image of the one or more images, wherein processing the one or
more images further comprises: expanding, by the compute device, each of a plurality
of edges identified in the at least one image during edge detection; and determining,
by the compute device, areas of at least one image without expanded edges, wherein
determining, based on the one or more images, the one or more occlusions on the camera
of the vehicle comprises determining, based on a determination of areas of the at
least one image without expanded edges, the one or more occlusions on the camera of
the vehicle.
Clause 29. The method of clause 25, any other suitable clause, or suitable combination
of clauses, wherein processing the one or more images comprises detecting one or more
circular lens artifacts in the at least one image of the one or more images, wherein
detecting one or more circular lens artifacts in the at least one image comprises:
performing, by the compute device, edge detection of the at least one image; identifying,
by the compute device, each of a plurality of contours defined by edge detection;
and determining, by the compute device and for each of the plurality of contours,
a ratio of a circle enclosing the corresponding contour to an area enclosed by the
corresponding contour, wherein determining, based on the one or more images, the one
or more occlusions on the camera of the vehicle comprises determining, based on a
determination of the ratios for each of the plurality of contours.
Clause 30. One or more non-transitory computer-readable media comprising a plurality
of instructions stored thereon that, when executed, causes a compute device to: receive
one or more images from a camera of a vehicle.
Clause 31. The one or more non-transitory computer-readable media of clause 30, any
other suitable clause, or suitable combination of clauses, wherein the compute device
is caused to process one or more images.
Clause 32. The one or more non-transitory computer-readable media of clause 31, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises at least one of determining a change in optical flow
based on three images of the one or more images.
Clause 33. The one or more non-transitory computer-readable media of clause 32, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises at least one of determining one or more regions of at
least one image of the one or more images that are out of focus.
Clause 34. The one or more non-transitory computer-readable media of clause 33, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises at least one of performing edge detection on at least
one image of the one or more images.
Clause 35. The one or more non-transitory computer-readable media of clause 34, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises at least one of detecting one or more circular lens artifacts
in at least one image of the one or more images.
Clause 36. The one or more non-transitory computer-readable media of clause 35, any
other suitable clause, or suitable combination of clauses, wherein the compute device
is caused to determine, based on the one or more images, one or more occlusions on
the camera of the vehicle.
Clause 37. The one or more non-transitory computer-readable media of clause 36, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises to determine the change in optical flow based on the
three images of the one or more images, wherein to determine the change in optical
flow based on the three images comprises: determine a first optical flow between a
first image of the three images and a second image of the three images; determine
a second optical flow between the second image and a third image of the three images;
and determine a difference in optical flow magnitude between the first optical flow
and the second optical flow for each of a plurality of pixels, wherein to determine,
based on the one or more images, the one or more occlusions on the camera of the vehicle
comprises to determine, based on the difference in optical flow magnitude between
the first optical flow and the second optical flow for each of a plurality of pixels,
the one or more occlusions on the camera of the vehicle.
Clause 38. The one or more non-transitory computer-readable media of clause 36, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises to determine the one or more regions of the at least
one image that are out of focus, wherein to determine the one or more regions the
at least one image that are out of focus comprises: divide the at least one image
into a plurality of subimages; and determine, for each of the plurality of subimages,
whether the corresponding subimage is blurry, wherein to determine, based on the one
or more images, the one or more occlusions on the camera of the vehicle comprises
to determine, based on a determination of whether each of the plurality of subimages
is blurry, the one or more occlusions on the camera of the vehicle.
Clause 39. The one or more non-transitory computer-readable media of clause 36, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises to perform edge detection on the at least one image of
the one or more images, wherein to process the one or more images further comprises:
expand each of a plurality of edges identified in the at least one image during edge
detection; and determine areas of at least one image without expanded edges, wherein
to determine, based on the one or more images, the one or more occlusions on the camera
of the vehicle comprises to determine, based on a determination of areas of the at
least one image without expanded edges, the one or more occlusions on the camera of
the vehicle.
Clause 40. The one or more non-transitory computer-readable media of clause 36, any
other suitable clause, or suitable combination of clauses, wherein to process the
one or more images comprises to detect one or more circular lens artifacts in the
at least one image of the one or more images, wherein to detect one or more circular
lens artifacts in the at least one image comprises: perform edge detection of the
at least one image; identify each of a plurality of contours defined by edge detection;
and determine, for each of the plurality of contours, a ratio of a circle enclosing
the corresponding contour to an area enclosed by the corresponding contour, wherein
to determine, based on the one or more images, the one or more occlusions on the camera
of the vehicle comprises to determine, based on a determination of the ratios for
each of the plurality of contours.
1. A compute device for detection of occlusions on a camera of a vehicle, the compute
device comprising:
the camera;
an occlusion detection module to:
receive one or more images from the camera of the vehicle;
process the one or more images, wherein to process the one or more images comprises
at least one of (i) determine a change in optical flow based on three images of the
one or more images, (ii) determine one or more regions of at least one image of the
one or more images that are out of focus, (iii) perform edge detection on at least
one image of the one or more images, and (iv) detect one or more circular lens artifacts
in at least one image of the one or more images; and
determine, based on the one or more images, one or more occlusions on the camera of
the vehicle.
2. The compute device of claim 1, wherein to process the one or more images comprises
to process one image,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based only on the one image from
the camera, the one or more occlusions on the camera of the vehicle.
3. The compute device of claim 1, wherein to process the one or more images comprises
to process no more than three images,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based only on no more than three
images from the camera, the one or more occlusions on the camera of the vehicle.
4. The compute device according to any one of claims 1 to 3, wherein to process the one
or more images comprises to determine the change in optical flow based on the three
images of the one or more images, wherein to determine the change in optical flow
based on the three images comprises:
determine a first optical flow between a first image of the three images and a second
image of the three images;
determine a second optical flow between the second image and a third image of the
three images; and
determine a difference in optical flow magnitude between the first optical flow and
the second optical flow for each of a plurality of pixels,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on the difference in optical
flow magnitude between the first optical flow and the second optical flow for each
of a plurality of pixels, the one or more occlusions on the camera of the vehicle.
5. The compute device of claim 4, wherein to process the one or more images further comprises
to determine a stationary score for each of the plurality of pixels based on the first
optical flow, wherein the stationary score for each of the plurality of pixels indicates
a magnitude of optical flow in the first optical flow for the corresponding pixel,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on the stationary score
for each of the plurality of pixels, the one or more occlusions on the camera of the
vehicle.
6. The compute device according to any one of claims 1 to 5, wherein to process the one
or more images comprises to determine the one or more regions of the at least one
image that are out of focus, wherein to determine the one or more regions the at least
one image that are out of focus comprises:
divide the at least one image into a plurality of subimages; and
determine, for each of the plurality of subimages, whether the corresponding subimage
is blurry,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on a determination of whether
each of the plurality of subimages is blurry, the one or more occlusions on the camera
of the vehicle.
7. The compute device according to any one of claims 1 to 6, wherein to process the one
or more images comprises to perform edge detection on the at least one image of the
one or more images, wherein to process the one or more images further comprises:
expand each of a plurality of edges identified in the at least one image during edge
detection; and
determine areas of at least one image without expanded edges,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on a determination of areas
of the at least one image without expanded edges, the one or more occlusions on the
camera of the vehicle.
8. The compute device according to any one of claims 1 to 7, wherein to process the one
or more images comprises to detect one or more circular lens artifacts in the at least
one image of the one or more images, wherein to detect one or more circular lens artifacts
in the at least one image comprises:
perform edge detection of the at least one image;
identify each of a plurality of contours defined by edge detection; and
determine, for each of the plurality of contours, a ratio of a circle enclosing the
corresponding contour to an area enclosed by the corresponding contour,
wherein to determine, based on the one or more images, the one or more occlusions
on the camera of the vehicle comprises to determine, based on a determination of the
ratios for each of the plurality of contours.
9. The compute device according to any one of claims 1 to 8, further comprising selecting,
based on one or more current conditions of the vehicle, one or more parameters of
an occlusion detection algorithm.
10. The compute device according to any one of claims 1 to 9, further comprising applying
a mask to the one or more images to block the sky.
11. A method for detection of occlusions on a camera of a vehicle, the method comprising:
receiving, by a compute device, one or more images from the camera of the vehicle;
processing, by the compute device, the one or more images, wherein processing the
one or more images comprises at least one of (i) determining a change in optical flow
based on three images of the one or more images, (ii) determining one or more regions
of at least one image of the one or more images that are out of focus, (iii) performing
edge detection on at least one image of the one or more images, and (iv) detecting
one or more circular lens artifacts in at least one image of the one or more images;
and
determining, by the compute device and based on the one or more images, one or more
occlusions on the camera of the vehicle.
12. The method of claim 11, wherein processing the one or more images comprises determining
the change in optical flow based on the three images of the one or more images, wherein
determining the change in optical flow based on the three images comprises:
determining, by the compute device, a first optical flow between a first image of
the three images and a second image of the three images;
determining, by the compute device, a second optical flow between the second image
and a third image of the three images; and
determining, by the compute device, a difference in optical flow magnitude between
the first optical flow and the second optical flow for each of a plurality of pixels,
wherein determining, based on the one or more images, the one or more occlusions on
the camera of the vehicle comprises determining, based on the difference in optical
flow magnitude between the first optical flow and the second optical flow for each
of a plurality of pixels, the one or more occlusions on the camera of the vehicle.
13. The method of claim 11 or 12, wherein processing the one or more images comprises
determining the one or more regions of the at least one image that are out of focus,
wherein determining the one or more regions the at least one image that are out of
focus comprises:
dividing, by the compute device, the at least one image into a plurality of subimages;
and
determining, by the compute device and for each of the plurality of subimages, whether
the corresponding subimage is blurry,
wherein determining, based on the one or more images, the one or more occlusions on
the camera of the vehicle comprises determining, based on a determination of whether
each of the plurality of subimages is blurry, the one or more occlusions on the camera
of the vehicle.
14. The method according to any one of claims 11 to 13, wherein processing the one or
more images comprises performing edge detection on the at least one image of the one
or more images, wherein processing the one or more images further comprises:
expanding, by the compute device, each of a plurality of edges identified in the at
least one image during edge detection; and
determining, by the compute device, areas of at least one image without expanded edges,
wherein determining, based on the one or more images, the one or more occlusions on
the camera of the vehicle comprises determining, based on a determination of areas
of the at least one image without expanded edges, the one or more occlusions on the
camera of the vehicle.
15. The method according to any one of claims 11 to 14, wherein processing the one or
more images comprises detecting one or more circular lens artifacts in the at least
one image of the one or more images, wherein detecting one or more circular lens artifacts
in the at least one image comprises:
performing, by the compute device, edge detection of the at least one image;
identifying, by the compute device, each of a plurality of contours defined by edge
detection; and
determining, by the compute device and for each of the plurality of contours, a ratio
of a circle enclosing the corresponding contour to an area enclosed by the corresponding
contour,
wherein determining, based on the one or more images, the one or more occlusions on
the camera of the vehicle comprises determining, based on a determination of the ratios
for each of the plurality of contours.
16. One or more non-transitory computer-readable media comprising a plurality of instructions
stored thereon that, when executed, causes a compute device to perform a method as
set forth in one of claims 11 to 15.